Abstract

Methods The clinical data of 82 patients with CTO who underwent PCI in Lianshui County People's Hospital were collected in this study. The patients were divided into training set (n = 54) and validation set (n = 28) by random sampling method. Statistical difference test was performed for clinical features of patients. Univariate and multivariate Cox regression analyses were performed to determine the risk factors affecting progression of CTO. Nomogram was used to construct a prediction model for disease progression. C-index was calculated, and the accuracy of the model was tested by calibration curve. Results No statistically significant differences were incorporated in baseline characteristics of included patients (p > 0.05). There were 25 patients with adverse cardiac events during follow-up in the training set and 13 in the validation set. The results of multivariate Cox regression analysis demonstrated that the important factors affecting postoperative disease progression mainly came down to age, BMI, diabetes, creatinine clearance rate, and left ventricular fraction < 40%. A nomogram was constructed and C-index was calculated. The calibration curve was then used to evaluate and predict risk model of disease progression. The result showed an internal validation C-index of 0.6219 and an external validation C-index of 0.6453, which indicated the good prediction performance of the model. Conclusion The risk of disease progression in CTO patients treated with PCI can be effectively predicted by the risk model constructed in this study, which opens up a great possibility for enriching the means of predicting the prognosis of these patients in clinical practice.

Highlights

  • Chronic total occlusion (CTO) is a common complex lesion of the coronary artery which was occluded for ≥3 months with the absence of any forward flow beyond a coronary occlusion (TIMI 0 grade) [1]

  • Univariate Cox regression analysis was performed with all clinical features of patients as influencing factors (Table 2), and the result showed that age (p < 0:001) (HR: 1.086, 95% CI: 1.035-1.139), creatinine clearance rate (p = 0:022) (HR: 0.954, 95% CI: 0.916-0.993), left ventricular ejection fraction (p < 0:001) (HR: 0.860, 95% CI: 0.7930.931), and diabetes (p < 0:001) (HR: 4.269, 95% CI: 1.8369.927) were implicated in the risk of disease progression in chronic total occlusion (CTO) patients

  • The analysis results showed that age (p = 0:006) (HR: 1.113, 95% CI: 1.023-1.092), body mass index (BMI) (p < 0:001) (HR: 1.290, 95% CI: 1.081-1.440), diabetes (p = 0:047) (HR: 2.873, 95% CI: 0.916-9.685), creatinine clearance rate (p = 0:008) (HR: 0.935, 95% CI: 0.899-0.987), and left ventricular ejection fraction (p < 0:001) (HR: 0.857, 95% CI: 0.781-0.924) after Percutaneous coronary intervention (PCI) in patients with CTO were independent factors affecting disease progression

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Summary

Introduction

Chronic total occlusion (CTO) is a common complex lesion of the coronary artery which was occluded for ≥3 months with the absence of any forward flow beyond a coronary occlusion (TIMI 0 grade) [1]. Age BMI Sex Smoking history Creatinine clearance rate Left ventricular ejection fraction Peripheral vascular disease Hypertension High cholesterol Diabetes Familial genetic history. The aim of this study was to construct a risk model that could effectively predict disease progression after PCI treatment in patients with CTO and enrich the means of clinical prediction of prognosis. The results of multivariate Cox regression analysis demonstrated that the important factors affecting postoperative disease progression mainly came down to age, BMI, diabetes, creatinine clearance rate, and left ventricular fraction < 40%. The risk of disease progression in CTO patients treated with PCI can be effectively predicted by the risk model constructed in this study, which opens up a great possibility for enriching the means of predicting the prognosis of these patients in clinical practice

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